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A Fuzzy Rule-based Learning Algorithm for Customer Churn Prediction
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insight_publication.pdf | 731.53 KB |
Date Issued
17 July 2016
Date Available
02T12:23:26Z September 2016
Abstract
Customer churn has emerged as a critical issue for Customer Relationship Management and customer retention in the telecommunications industry, thus churn prediction is necessary and valuable to retain the customers and reduce the losses. Recently rule-based classification methods designed transparently interpreting the classification results are preferable in customer churn prediction. However most of rulebased learning algorithms designed with the assumption of well-balanced datasets, may provide unacceptable prediction results. This paper introduces a Fuzzy Association Rule-based Classification Learning Algorithm for customer churn prediction. The proposed algorithm adapts CAIM discretization algorithm to obtain fuzzy partitions, then searches a set of rules using an assessment method. The experiments were carried out to validate the proposed approach using the customer services dataset of Telecom. The experimental results show that the proposed approach can achieve acceptable prediction accuracy and efficient for churn prediction.
Sponsorship
European Commission - Seventh Framework Programme (FP7)
Other Sponsorship
Marie Curie Actions
Type of Material
Conference Publication
Publisher
Springer
Copyright (Published Version)
2016 Springer
Language
English
Status of Item
Peer reviewed
Part of
Perner, P. (ed.). Proceedings of the 16th Industrial Conference on Data Mining (ICDM 2016), New York, United States, 13-17 July 2016
Description
16th Industrial Conference on Data Mining (ICDM 2016), New York, United States, 13-17 July 2016
This item is made available under a Creative Commons License
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